Face recognition finds various applications in surveillance, Law enforcement etc. These applications require fast image processing in real time. Modern GPUs have evolved fully programmable parallel stream processors. The problem of face recognition in real time system is benefited by parallelism. With the aim of fulfilling both speed and accuracy criteria we present a GPU accelerated Face Recognition system. OpenCL is a heterogeneous computing language that allows extracting parallelism on different platforms like DSP processors, FPGAs, GPUs. The proposed kernel on GPU exploits coarse grain parallelism for Local Binary Pattern (LBP) histogram computation and ELTP (Enhanced Local Ternary Pattern) feature extraction. The proposed optimization ...
In this paper, we examined heterogeneous architectures, for their suitability to run the scale invar...
The future multi-modal user interfaces of battery-powered mobile devices are expected to require com...
This article introduces a parallel neural network approach implemented over Graphic Processing Units...
Enhanced Local Ternary Patterns (ELTP) significantly improves performance over other feature descrip...
This paper presents a novel approach for real time face detection using heterogeneous computing. The...
This work offers a graphics processing unit (GPU)-based system for real-time face recognition, which...
International audienceFace detection is an important aspect for various domains such as: biometrics,...
Graphics processing units have massive parallel processing capabilities, and there is a growing inte...
Abstract — Human face detection and recognition finds various application in domain like Surveillanc...
The goal of face detection is to determine the presence of faces in arbitrary images, along with the...
Humans are able to easily locate faces in its environment despite difficult conditions such as occlu...
Modern GPUs have evolved into fully programmable parallel stream multiprocessors. Due to the nature ...
Kernel methods such as kernel principal component analysis and support vector machines have become p...
Face recognition is a pattern recognition technique and one of the most important biometrics; it is ...
The expansion of biometric applications and databases is worrying. Processing extensive or sophistic...
In this paper, we examined heterogeneous architectures, for their suitability to run the scale invar...
The future multi-modal user interfaces of battery-powered mobile devices are expected to require com...
This article introduces a parallel neural network approach implemented over Graphic Processing Units...
Enhanced Local Ternary Patterns (ELTP) significantly improves performance over other feature descrip...
This paper presents a novel approach for real time face detection using heterogeneous computing. The...
This work offers a graphics processing unit (GPU)-based system for real-time face recognition, which...
International audienceFace detection is an important aspect for various domains such as: biometrics,...
Graphics processing units have massive parallel processing capabilities, and there is a growing inte...
Abstract — Human face detection and recognition finds various application in domain like Surveillanc...
The goal of face detection is to determine the presence of faces in arbitrary images, along with the...
Humans are able to easily locate faces in its environment despite difficult conditions such as occlu...
Modern GPUs have evolved into fully programmable parallel stream multiprocessors. Due to the nature ...
Kernel methods such as kernel principal component analysis and support vector machines have become p...
Face recognition is a pattern recognition technique and one of the most important biometrics; it is ...
The expansion of biometric applications and databases is worrying. Processing extensive or sophistic...
In this paper, we examined heterogeneous architectures, for their suitability to run the scale invar...
The future multi-modal user interfaces of battery-powered mobile devices are expected to require com...
This article introduces a parallel neural network approach implemented over Graphic Processing Units...